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MC-eLDA: Towards Pathogenesis Analysis in Traditional Chinese Medicine by Multi-Content Embedding LDA

机译:MC-ELDA:通过多内容嵌入LDA对中药的发病机制分析

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Traditional Chinese medicine (TCM) is well-known for its unique theory and effective treatment for complicated diseases. In TCM theory, "pathogenesis" is the cause of patient's disease symptoms and is the basis for prescribing herbs. However, the essence of pathogenesis analysis is not well depicted by current researches. In this paper, we propose a novel topic model called Multi-Content embedding LDA (MC-eLDA), aiming to collaboratively capture the relationships of symptom-pathogenesis-herb triples, relationship between symptom-symptom, and relationship between herb-herb, which can be used in auxiliary diagnosis and treatment. By projecting discrete symptom words and herb words into two continuous semantic spaces respectively, the semantic equivalence can be encoded by exploiting the contiguity of their corresponding embeddings. Compared with previous models, topic coherence in each pathogenesis cluster can be promoted. Pathogenesis structures that previous topic modeling can not capture can be discovered by MC-eLDA. Then a herb prescription recommendation method is conducted based on MC-eLDA. Experimental results on two real-world TCM medical cases datasets demonstrate the effectiveness of the proposed model for analyzing pathogenesis as well as helping make diagnosis and treatment in clinical practice.
机译:中药(TCM)以其独特的理论和对复杂疾病的有效治疗而闻名。在中医理论中,“发病机制”是患者疾病症状的原因,是处方药的基础。然而,通过当前的研究表明发病机制分析的本质。在本文中,我们提出了一种名为多内容嵌入LDA(MC-ELDA)的新型主题模型,旨在协同捕获症状致病性 - 草药三元组的关系,症状症状与草药之间的关系之间的关系可用于辅助诊断和治疗。通过分别将离散的症状词和草本单词投影到两个连续的语义空间中,可以通过利用它们相应的嵌入的邻接来编码语义等效。与以前的模型相比,可以促进每个发病机构集群的主题相干性。 MC-ELDA可以发现前提主题建模的发病机构结构。然后是基于MC-ELDA进行的草本处方推荐方法。两个实际TCM医疗情况数据集的实验结果证明了提出的拟议模型分析发病机制的有效性,以及帮助在临床实践中进行诊断和治疗。

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